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Mining Genotype-Phenotype Associations from Public Knowledge Sources via Semantic Web Querying

机译:通过语义网查询从公共知识源中挖掘基因型-表型关联

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摘要

Gene Wiki Plus (GeneWiki+) and the Online Mendelian Inheritance in Man (OMIM) are publicly available resources for sharing information about disease-gene and gene-SNP associations in humans. While immensely useful to the scientific community, both resources are manually curated, thereby making the data entry and publication process time-consuming, and to some degree, error-prone. To this end, this study investigates Semantic Web technologies to validate existing and potentially discover new genotype-phenotype associations in GWP and OMIM. In particular, we demonstrate the applicability of SPARQL queries for identifying associations not explicitly stated for commonly occurring chronic diseases in GWP and OMIM, and report our preliminary findings for coverage, completeness, and validity of the associations. Our results highlight the benefits of Semantic Web querying technology to validate existing disease-gene associations as well as identify novel associations although further evaluation and analysis is required before such information can be applied and used effectively.
机译:Gene Wiki Plus(GeneWiki +)和在线孟德尔在线遗传(OMIM)是可共享的资源,用于共享有关人类疾病基因和基因SNP关联的信息。虽然这对科学界非常有用,但是这两种资源都是手动管理的,因此使数据输入和发布过程既费时又在一定程度上易于出错。为此,本研究调查了语义Web技术,以验证GWP和OMIM中现有的并有可能发现新的基因型-表型关联。特别是,我们展示了SPARQL查询在识别未明确指出的GWP和OMIM中常见的慢性疾病的关联性方面的适用性,并报告了有关关联性的覆盖范围,完整性和有效性的初步发现。我们的结果强调了语义网查询技术的优势,可以验证现有的疾病-基因关联并识别新颖的关联,尽管在此类信息可以有效应用和使用之前还需要进行进一步的评估和分析。

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